Python module
max.pipelines.architectures.mpnet_modulev3
MPNet sentence transformer architecture for embeddings generation.
MPNetConfigβ
class max.pipelines.architectures.mpnet_modulev3.MPNetConfig(*, pool_embeddings, huggingface_config, pipeline_config)
Bases: ArchConfig
Configuration for MPNet V3 models.
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Parameters:
-
- pool_embeddings (bool)
- huggingface_config (AutoConfig)
- pipeline_config (PipelineConfig)
get_max_seq_len()β
get_max_seq_len()
Returns the default maximum sequence length for the model.
Subclasses should determine whether this value can be overridden by
setting the --max-length (pipeline_config.model.max_length) flag.
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Return type:
huggingface_configβ
huggingface_config: AutoConfig
initialize()β
classmethod initialize(pipeline_config, model_config=None)
Initialize the config from a PipelineConfig.
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Parameters:
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- pipeline_config (PipelineConfig) β The pipeline configuration.
- model_config (MAXModelConfig | None) β The model configuration to read from. When
None(the default),pipeline_config.modelis used. Pass an explicit config (e.g.pipeline_config.draft_model) to initialize the arch config for a different model.
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Return type:
pipeline_configβ
pipeline_config: PipelineConfig
pool_embeddingsβ
pool_embeddings: bool
MPNetInputsβ
class max.pipelines.architectures.mpnet_modulev3.MPNetInputs(next_tokens_batch, attention_mask, *, kv_cache_inputs=None, lora_ids=None, lora_ranks=None, hidden_states=None)
Bases: ModelInputs
Input tensors for the MPNet model.
-
Parameters:
attention_maskβ
attention_mask: Buffer
next_tokens_batchβ
next_tokens_batch: Buffer
MPNetPipelineModelβ
class max.pipelines.architectures.mpnet_modulev3.MPNetPipelineModel(pipeline_config, session, devices, kv_cache_config, weights, adapter=None, return_logits=ReturnLogits.ALL)
Bases: PipelineModel[TextContext]
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Parameters:
-
- pipeline_config (PipelineConfig)
- session (InferenceSession)
- devices (list[Device])
- kv_cache_config (KVCacheConfig)
- weights (Weights)
- adapter (WeightsAdapter | None)
- return_logits (ReturnLogits)
calculate_max_seq_len()β
classmethod calculate_max_seq_len(pipeline_config, huggingface_config)
Calculates the optimal max sequence length for the model.
Models are expected to implement this method. The following example shows how to implement it for a Mistral model:
class MistralModel(PipelineModel):
@classmethod
def calculate_max_seq_len(cls, pipeline_config, huggingface_config) -> int:
try:
return upper_bounded_default(
upper_bound=huggingface_config.max_seq_len,
default=pipeline_config.model.max_length,
)
except ValueError as e:
raise ValueError(
"Unable to infer max_length for Mistral, the provided "
f"max_length ({pipeline_config.model.max_length}) exceeds the "
f"model's max_seq_len ({huggingface_config.max_seq_len})."
) from e-
Parameters:
-
- pipeline_config (PipelineConfig) β Configuration for the pipeline.
- huggingface_config (AutoConfig) β Hugging Face model configuration.
-
Returns:
-
The maximum sequence length to use.
-
Return type:
execute()β
execute(model_inputs)
Executes the graph with the given inputs.
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Parameters:
-
model_inputs (ModelInputs) β The model inputs to execute, containing tensors and any other required data for model execution.
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Returns:
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ModelOutputs containing the pipelineβs output tensors.
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Return type:
This is an abstract method that must be implemented by concrete PipelineModels to define their specific execution logic.
load_model()β
load_model()
prepare_initial_token_inputs()β
prepare_initial_token_inputs(replica_batches, kv_cache_inputs=None, return_n_logits=1)
Prepares the initial inputs to be passed to execute().
The inputs and functionality can vary per model. For example, model
inputs could include encoded tensors, unique IDs per tensor when using
a KV cache manager, and kv_cache_inputs (or None if the model does
not use KV cache). This method typically batches encoded tensors,
claims a KV cache slot if needed, and returns the inputs and caches.
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Parameters:
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- replica_batches (Sequence[Sequence[TextContext]])
- kv_cache_inputs (KVCacheInputs[Buffer, Buffer] | None)
- return_n_logits (int)
-
Return type:
prepare_next_token_inputs()β
prepare_next_token_inputs(next_tokens, prev_model_inputs)
Prepares the secondary inputs to be passed to execute().
While prepare_initial_token_inputs is responsible for managing the initial inputs.
This function is responsible for updating the inputs, for each step in a multi-step execution pattern.
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Parameters:
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- next_tokens (Buffer)
- prev_model_inputs (ModelInputs)
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Return type:
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